As far back as records of the subject go, the art and science of leadership has always addressed one constant question: How should humans lead other humans? Today, that paradigm is shifting. Leaders must now learn to guide hybrid teams—composed of both human professionals and AI systems that support and augment human team members, while increasingly also performing complex tasks independently.
Already, more than 75% of knowledge workers report using AI at work. Meanwhile, Gartner predicts that 100 million workers will collaborate with “robo-colleagues” by 2026.
This is not a minor evolution. It may be the most profound transformation in human history of how we conceive of and implement leadership. As AI systems grow more advanced, we must reimagine what it means to lead. The skills that ensured success in the past will not be sufficient for what lies ahead.
Through my research and my work with organizations undergoing this shift, I have identified seven essential ways that leaders must evolve if they are to lead effectively in this new age of AI-augmented work.
1. Become a Conductor of the AI Orchestra
Shift: from task director to systems orchestrator
As AI moves into the mainstream, and as agentic AI begins its rollout in workplaces around the world, leaders must understand how humans and AI systems interact across their organizations.
They must become skilled conductors of what I call the “AI orchestra.”
This requires more than just tool proficiency. It means enabling and supporting every human team member with the skills they need to coordinate across multiple AI systems. It means learning to give clear and strategic direction to AI systems, human team members, and the unified system of which they both form a part. Critically, it also means learning how to assess AI-generated outputs with discernment. Just as a conductor ensures harmony and rhythm without playing every instrument, today’s leader must orchestrate intelligent collaboration between humans and machines.
Exercise: Assign a team project that requires the use of three distinct AI tools to solve a single challenge. Afterward, debrief together: How did team members coordinate their use of the tools? Where did friction arise? What did the exercise reveal about managing complexity?
2. Gain Firsthand Experience of Collaborating with AI
Shift: From delegating AI adoption to modeling it
You can’t lead what you haven’t lived. Leaders must personally engage with AI tools—not to become technical experts, but to develop an intuitive understanding of their evolving capabilities and limitations.
When team members see their leaders using AI thoughtfully, it normalizes adoption and sets the tone for healthy human-AI collaboration. Just as importantly, this firsthand experience equips leaders to make better strategic decisions about where and how to implement AI.
Exercise: Use AI for three leadership-related tasks this week—writing a summary, analyzing trends, and preparing communications. Note what worked, what didn’t, and share your reflections with the team.
3. Intentionally Create Skill Development Opportunities
Shift: From assuming organic growth to designing skill resilience
As AI handles more cognitive tasks, human skills like critical thinking, reasoning, and interpersonal judgment risk erosion. Leaders can no longer rely on natural work progression to build these abilities.
Paradoxically, we must sometimes introduce friction—by designing projects that intentionally limit AI use—to preserve the skills AI cannot replicate.
Exercise: Create “AI-free zones” within select tasks or stages of a project. Ask teams to complete these without assistance, then reflect: Which human capabilities were most essential? What gaps became visible?
4. Master the Art of Asking Questions
Shift: From providing answers to elevating inquiry
The most effective leaders of hybrid teams will distinguish themselves not by giving commands but by asking better questions. Prompting AI well requires the same clarity, curiosity, and critical thinking that great leadership has always demanded.
This shift also enhances team dynamics. Asking questions encourages dialogue, surfaces blind spots, and builds collective intelligence—both human and machine.
Exercise: Create a “questioning matrix” focused on five areas: ethics, data quality, user experience, regulatory impact, and business value. Apply this to your next AI initiative to guide both human discussion and machine prompting.
5. Cultivate Clarity of Purpose
Shift: From doing more to focusing on what matters most
AI dramatically expands what is possible. But when everything becomes feasible, the leadership challenge becomes discernment—knowing what is worth doing.
Purpose provides direction amidst the noise. It ensures AI is deployed to amplify what truly matters—not just what’s trendy or easy.
Exercise: Draft a one-sentence “AI purpose filter” (e.g., “We implement AI only when it deepens customer trust or improves outcomes”). Then evaluate all current AI initiatives through this lens and realign as needed.
6. Develop Enhanced Emotional Intelligence
Shift: From performance oversight to emotional stewardship
The AI transition is deeply human—and often unsettling. People worry about their relevance, identity, and future. Leaders must acknowledge this emotional landscape and create psychological safety.
Leading AI-augmented teams requires greater empathy, openness, and emotional clarity. Teams need help not just with tools, but with meaning.
Exercise: Host “AI concern circles” where each person shares one fear and one hope about AI in their work. Listen without judgment. Follow up with individuals who express high anxiety and help them envision new roles for their unique human strengths.
7. Transform Into a Moral Agent
Shift: From operational decision-maker to ethical guide
AI raises urgent questions about bias, surveillance, accountability, and human dignity. These questions cannot be outsourced or automated. They are leadership responsibilities.
Studying AI ethics is important—but ethical leadership begins with cultivating your own moral compass. Leaders must be willing to pause, challenge assumptions, and prioritize long-term human impact over short-term gains.
Exercise: Run an “ethical pre-mortem” for your next AI project. Imagine it has failed ethically one year from now. What went wrong? Who was harmed? Use this scenario to build safeguards and accountability from the outset.
The Future of Leadership Is Human + Machine
The integration of AI across the workforce will not make human leadership obsolete—but it will reshape the role of leader from the ground up. In this new era, the most successful leaders will be those who evolve from directive to facilitative, from efficient to intentional, from reactive to reflective.
Leading AI-augmented teams requires more than technical adaptation. It demands a deeper humanity—one that blends curiosity, ethics, emotional intelligence, and purpose.
If done right, the result won’t be less human leadership—it will be more.